Comparison of Extreme Learning Machine and Holt Winter’s Exponential Smoothing Methods in Railway Passengers Forecasting
DOI:
https://doi.org/10.24036/ujsds/vol2-iss3/211Keywords:
Extreme Learning Machine, Holt Wintesr Exponential SmoothingAbstract
Forecasting the number of passengers on the Pariaman Express train is an activity that is considered to have the potential to help PT KAI in maximizing passenger service facilities and comfort. It is estimated that the number of train passengers in Indonesia will always increase along with the increasing population of Indonesia. The high interest of users of this mode of transportation can be seen from historical data that continues to increase every year. PT KAI (Persero) as a single train transportation provider company needs to have several strategies in providing and meeting passenger needs every day. In the study of forecasting the number of passengers on the Pariaman Express train using the Holt Winters exponential smoothing method and one of the artificial neural network methods, namely the extreme learning machine. The purpose of this study was to determine the comparison of the accuracy values of the forecast results produced by the two methods, and to find out which method is good to use in this forecast. The data used is data on the number of Pariaman Express train passengers from 2021-2023. The results of the study show that the comparison of the accuracy values of the forecasting of the number of train passengers shows that the Holt Winter's and ELM methods have error values above 10%, meaning that the Holt Winter's and ELM methods are good at forecasting for 4 periods. Holt Winter's has a MAPE value of 17.10% and ELM has a MAPE value of 20%.
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Copyright (c) 2024 Meil Sri Dian Azma, Dony Permana, Fadhilah Fitri, Atus Amadi Putra
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